2 research outputs found

    Development of a robust multi-scale featured local binary pattern for improved facial expression recognition

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    Compelling facial expression recognition (FER) processes have been utilized in very successful ļ¬elds like computer vision, robotics, artiļ¬cial intelligence, and dynamic texture recognition. However, the FERā€™s critical problem with traditional local binary pattern (LBP) is the loss of neighboring pixels related to diļ¬€erent scales that can aļ¬€ect the texture of facial images. To overcome such limitations, this study describes a new extended LBP method to extract feature vectors from images, detecting each image from facial expressions. The proposed method is based on the bitwise AND operation of two rotational kernels applied on LBP(8,1)and LBP(8,2)and utilizes two accessible datasets. Firstly, the facial parts are detected and the essential components of a face are observed, such as eyes, nose, and lips. The portion of the face is then cropped to reduce the dimensions and an unsharp masking kernel is applied to sharpen the image. The ļ¬ltered images then go through the feature extraction method and wait for the classiļ¬cation process. Four machine learning classiļ¬ers were used to verify the proposed method. This study shows that the proposed multi-scale featured local binary pattern (MSFLBP), together with Support Vector Machine (SVM), outperformed the recent LBP-based state-of-the-art approaches resulting in an accuracy of 99.12% for the Extended Cohnā€“Kanade(CK+) dataset and 89.08% for the Karolinska Directed Emotional Faces(KDEF)dataset
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